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Multilinear locality preserving canonical correlation analysis for face recognition

机译:保留人脸的多线性局部典型相关分析

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We propose in this paper a multilinear locality preserving canonical correlation analysis (MLPCCA) method for face recognition. Motivated by the fact that both spatial structure information within each face sample and local geometry information among multiple face samples are useful for facial image feature extraction, we utilize them simultaneously and derive an improved canonical correlation analysis algorithm - MLPCCA - to seek multiple sets of pairwise projection bases to maximize the correlation of two facial image sets. The proposed MLPCCA method is designed to characterize the potential nonlinear correlation of two image sets by utilizing both the spatial and local geometrical information, hence is more suitable for face recognition across large pose and illumination variants. Experimental results are presented to demonstrate the efficacy of the proposed method.
机译:在本文中,我们提出了一种用于人脸识别的多线性局部保留规范相关分析(MLPCCA)方法。由于每个面部样本中的空间结构信息和多个面部样本之间的局部几何信息都可用于面部图像特征提取,因此我们同时利用它们并得出一种改进的规范相关分析算法MLPCCA来寻找多对成对投影基础可以最大化两个面部图像集的相关性。所提出的MLPCCA方法旨在通过利用空间和局部几何信息来表征两个图像集的潜在非线性相关性,因此更适合于跨较大姿势和照明变体的面部识别。实验结果表明该方法的有效性。

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